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Techniques used: Linear Discriminant Analysis, Logistic Regression, Neural Network, Boosting, Random Forest, CART Healthcare Prediction of user’s mood using smartphone data Techniques used: Logistic Regression, Random Tree, ADA Boost, Random Forest, KSVM Insurance Personal insurance digital assistant Techniques used: NLP (Natural Language
Analysis, Linear, Discriminant, Linear discriminant analysis
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